Standalone noise and anomaly detection in wireless sensor networks: A novel time-series and adaptive Bayesian-network-based approach |
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Authors: | Mahmood Safaei Abul Samad Ismail Hassan Chizari Maha Driss Wadii Boulila Shahla Asadi Mitra Safaei |
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Affiliation: | 1. School of Computer Science, Faculty of Engineering, University Technology Malaysia, Johor Bahru, Malaysia;2. Department of Computing, University of Glouctershire, Cheltenham, UK;3. College of Computer Science and Engineering, Taibah University, Medina, Saudi Arabia;4. Faculty of Computer Science and Information Technology, University Putra Malaysia, Seri Kembangan, Malaysia;5. Informatik Gottrried Wilhelm, Leibniz Universitat, Hannover, Germany |
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Abstract: | Wireless sensor networks (WSNs) consist of small sensors with limited computational and communication capabilities. Reading data in WSN is not always reliable due to open environmental factors such as noise, weakly received signal strength, and intrusion attacks. The process of detecting highly noisy data is called anomaly or outlier detection. The challenging aspect of noise detection in WSN is related to the limited computational and communication capabilities of sensors. The purpose of this research is to design a local time-series-based data noise and anomaly detection approach for WSN. The proposed local outlier detection algorithm (LODA) is a decentralized noise detection algorithm that runs on each sensor node individually with three important features: reduction mechanism that eliminates the noneffective features, determination of the memory size of data histogram to accomplish the effective available memory, and classification for predicting noisy data. An adaptive Bayesian network is used as the classification algorithm for prediction and identification of outliers in each sensor node locally. Results of our approach are compared with four well-known algorithms using benchmark real-life datasets, which demonstrate that LODA can achieve higher (up to 89%) accuracy in the prediction of outliers in real sensory data. |
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Keywords: | anomaly detection outlier detection time-series analysis wireless sensor network |
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